Главная
Study mode:
on
1
Intro
2
About Starburst
3
Today's approach: Too much copying & moving
4
The problem
5
New Lakehouse Architecture
6
Lakehouse architecture provides Optionality
7
The Gartner Data Sharing Model To accelerate digital business
8
Under the Hood
9
First: Why Data Lake?
10
Second: Why Data Lakehouse?
11
What is Trino?
12
Starburst's Native Delta Lake Reader
13
Delta Lake Reader Performance
14
Data Flow Diagram
15
Data Ingestion and Transformation
16
Beyond SELECT
Description:
Explore the failures of enterprise data warehouse paradigms and discover the need for lakehouse architecture in this 26-minute talk by Databricks. Delve into Starburst's approach to powering SQL-based interactive analytics on Delta Lake, the foundation for lakehouse architecture. Learn about the problems with today's data management approaches, including excessive copying and moving of data. Understand the benefits of the new lakehouse architecture, including optionality and alignment with Gartner's Data Sharing Model for accelerating digital business. Gain insights into the underlying technology, including the reasons for choosing Data Lake and Data Lakehouse, the role of Trino, and Starburst's Native Delta Lake Reader. Examine data flow diagrams, ingestion and transformation processes, and explore capabilities beyond basic SELECT operations.

Why Lakehouse Architecture Now - Exploring Enterprise Data Warehouse Failures and the Need for Lakehouse Paradigm

Databricks
Add to list
0:00 / 0:00